用于数据压缩的离散线性啁啾变换(dct)

Osama A S Alkishriwo, L. Chaparro
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引用次数: 14

摘要

压缩感知试图将通常在数据压缩中完成的频率变换和阈值处理步骤简化为一个步骤。信号在时间和频率上的稀疏性是压缩感知中的凸优化的必要条件。虽然不确定性原理保证了某些信号在时间和频率上的稀疏性,但由啁啾组成的信号在时间和频率上都不是稀疏的。在本文中,我们提出了一个正交线性啁啾变换,离散线性啁啾变换(dct),以表示任何信号的线性啁啾,具有调制和对偶性质。使用dct可以评估信号在时间或频率上的稀疏性,如果在这两个域中都不是稀疏的,dct的调制和对偶特性提供了一种将信号转换为稀疏信号的方法。提出的dct在数据压缩方面的应用。通过使用稀疏和非稀疏测试信号以及实际信号来说明该变换。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A discrete linear chirp transform (DLCT) for data compression
Compressive sensing attempts to simplify the frequency transformation and thresholding steps, commonly done in data compression, into one. Sparseness of the signal, in either time or frequency, is required for the convex optimization in compressive sensing to perform well. Although sparseness of certain signals, in either time or frequency, is guaranteed by the uncertainty principle signals composed of chirps are not however sparse in either domain. In this paper we propose an orthogonal linear-chirp transform, the discrete linear chirp transform (DLCT), to represent any signal in terms of linear chirps, with modulation and dual properties. Using the DLCT the sparseness of the signal in either time or frequency can be assessed, and if not sparse in neither of these domains, the modulation and dual properties of the DLCT provide a way to transform the signal into a sparse signal. The application of the proposed DLCT is in data compression. The transformation is illustrated by using sparse and not sparse test signals as well as actual signals.
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